Research

Interaction Content Aware Network Embedding via Co-embedding of Nodes and Edges

June 3, 2018

Abstract

Network embedding has been increasingly employed in network analysis as it can learn node representations that encode the network structure resulting from node interactions. In this paper, besides the network structure, the interaction content within which each interaction arises is also embedded because it reveals interaction preferences of the two nodes involved, and interaction preferences are essential characteristics that nodes expose in the network environment. Specifically, we propose interaction content aware network embedding (ICANE) via co-embedding of nodes and edges. The embedding of edges is to learn edge representations that preserve the interaction content. Then the interaction content can be incorporated into node representations through edge representations. Comprehensive evaluation demonstrates ICANE outperforms five recent network embedding models in applications including visualization, link prediction and classification.

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